20.5 C
London
Monday, June 2, 2025
HomePandas in PythonDataFrame Functions in PythonPandas: Update Column Values Based on Another DataFrame

Pandas: Update Column Values Based on Another DataFrame

Related stories

Learn About Opening an Automobile Repair Shop in India

Starting a car repair shop is quite a good...

Unlocking the Power: Embracing the Benefits of Tax-Free Investing

  Unlocking the Power: Embracing the Benefits of Tax-Free Investing For...

Income Splitting in Canada for 2023

  Income Splitting in Canada for 2023 The federal government’s expanded...

Can I Deduct Home Office Expenses on my Tax Return 2023?

Can I Deduct Home Office Expenses on my Tax...

Canadian Tax – Personal Tax Deadline 2022

  Canadian Tax – Personal Tax Deadline 2022 Resources and Tools...

Often you may want to update the values in one column of a pandas DataFrame using values from another DataFrame.

Fortunately this is easy to do using the merge() function in pandas.

The following example shows how to do so.

Example: Update Column Values in Pandas DataFrame Based on Another DataFrame

Suppose we have the following pandas DataFrame that contains information about various basketball players:

import pandas as pd

#create DataFrame
df1 = pd.DataFrame({'team': ['A', 'B', 'C', 'D', 'E', 'F', 'G', 'H'],
                    'points': [18, 22, 19, 14, 14, 11, 20, 28],
                    'assists': [0, 0, 0, 1, 0, 0, 0, 1]})

#view DataFrame
print(df1)

  team  points  assists
0    A      18        0
1    B      22        0
2    C      19        0
3    D      14        1
4    E      14        0
5    F      11        0
6    G      20        0
7    H      28        1

Now suppose the values in the assists column are not updated in this DataFrame.

However, suppose we have the following second DataFrame that does have updated values for the assists column:

#create second DataFrame
df2 = pd.DataFrame({'team': ['A', 'B', 'C', 'D', 'E', 'F', 'G', 'H'],
                    'points': [18, 22, 19, 14, 14, 11, 20, 28],
                    'assists': [8, 7, 7, 4, 9, 12, 3, 5]})

#view second DataFrame
print(df2)

  team  points  assists
0    A      18        8
1    B      22        7
2    C      19        7
3    D      14        4
4    E      14        9
5    F      11       12
6    G      20        3
7    H      28        5

We can use the following syntax to update the values in the assists column of the first DataFrame using the values in the assists column of the second DataFrame:

#merge two DataFrames
df1 = df1.merge(df2, on='team', how='left')

#drop original DataFrame columns
df1.drop(['points_x', 'assists_x'], inplace=True, axis=1)

#rename columns
df1.rename(columns={'points_y':'points','assists_y':'assists'}, inplace=True)

#view updated DataFrame
print(df1)

  team  points  assists
0    A      18        8
1    B      22        7
2    C      19        7
3    D      14        4
4    E      14        9
5    F      11       12
6    G      20        3
7    H      28        5

Notice that the values in the assists column of the first DataFrame have been updated using the values from the assists column in the second DataFrame.

Additional Resources

The following tutorials explain how to perform other common tasks in pandas:

How to Drop First Row in Pandas DataFrame
How to Drop First Column in Pandas DataFrame
How to Drop Duplicate Columns in Pandas

Subscribe

- Never miss a story with notifications

- Gain full access to our premium content

- Browse free from up to 5 devices at once

Latest stories